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A model for short-term and long-term learning in continuous-time recurrent neural networks

Mattias Wahde (Institutionen för tillämpad mekanik)
Proceedings of FAN/iFAN 2010 (2010)
[Konferensbidrag, refereegranskat]

A biologically inspired computational model for learning in continuous-time recurrent neural networks is introduced and described. The model includes both short-term learning, dependent on neural activity, and long-term learning, dependent on synaptic tagging and artificial gene regulation. Even though many aspects of learning remain to be included in the model, it is shown that, in its present state, the model can reproduce important aspects of fundamental forms of learning such as habituation and sensitization.

Nyckelord: Neural networks, learning and memory

Denna post skapades 2010-12-06.
CPL Pubid: 130078


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